Identifying floating plastic marine debris using a deep learning approach

Environ Sci Pollut Res Int. 2019 Jun;26(17):17091-17099. doi: 10.1007/s11356-019-05148-4. Epub 2019 Apr 18.

Abstract

Estimating the volume of macro-plastics which dot the world's oceans is one of the most pressing environmental concerns of our time. Prevailing methods for determining the amount of floating plastic debris, usually conducted manually, are time demanding and rather limited in coverage. With the aid of deep learning, herein, we propose a fast, scalable, and potentially cost-effective method for automatically identifying floating marine plastics. When trained on three categories of plastic marine litter, that is, bottles, buckets, and straws, the classifier was able to successfully recognize the preceding floating objects at a success rate of ≈ 86%. Apparently, the high level of accuracy and efficiency of the developed machine learning tool constitutes a leap towards unraveling the true scale of floating plastics.

Keywords: Convolutional Neural Networks; Data processing; Deep learning; Image classification; Marine debris; Monitoring; Plastics.

MeSH terms

  • Deep Learning*
  • Environmental Monitoring / methods*
  • Oceans and Seas
  • Plastics / analysis*
  • Waste Products / analysis*

Substances

  • Plastics
  • Waste Products